import torch
from torch._six import inf, nan
from functools import reduce, wraps
from operator import mul, itemgetter
from torch.autograd import Variable, Function, detect_anomaly
from torch.testing import make_non_contiguous
from common_utils import (skipIfNoLapack,
                          prod_single_zero, random_square_matrix_of_rank,
                          random_symmetric_matrix, random_symmetric_psd_matrix,
                          random_symmetric_pd_matrix, make_nonzero_det,
                          random_fullrank_matrix_distinct_singular_value)


def index_variable(shape, max_indices):
    if not isinstance(shape, tuple):
        shape = (shape,)
    index = torch.rand(*shape).mul_(max_indices).floor_().long()
    return index


def index_perm_variable(shape, max_indices):
    if not isinstance(shape, tuple):
        shape = (shape,)

    index = torch.randperm(max_indices).narrow(0, 0, reduce(mul, shape)).view(shape)
    return index


def gather_variable(shape, index_dim, max_indices, duplicate=False):
    assert len(shape) == 2
    assert index_dim < 2
    batch_dim = 1 - index_dim
    index = torch.LongTensor(*shape)
    for i in range(shape[index_dim]):
        index.select(index_dim, i).copy_(
            torch.randperm(max_indices)[:shape[batch_dim]])
    if duplicate:
        index.select(batch_dim, 0).copy_(index.select(batch_dim, 1))
    return index


def bernoulli_scalar():
    return torch.tensor(0, dtype=torch.uint8).bernoulli_()


def mask_not_all_zeros(shape):
    assert len(shape) > 0
    while True:
        result = torch.randn(shape).gt(0)
        if result.sum() > 0:
            return result


def uniform_scalar(offset=0, requires_grad=False):
    v = torch.rand(()) + offset
    v.requires_grad = requires_grad
    return v


def normal_scalar_clamp(amin, amax, requires_grad=False):
    v = torch.randn(()).clamp(amin, amax)
    v.requires_grad = requires_grad
    return v


def prod_zeros(dim_size, dim_select):
    assert len(dim_select) == 2
    result = torch.randn(dim_size, dim_size, dim_size)
    result.narrow(dim_select[0], 0, 1).narrow(dim_select[1], 1, 1).zero_()
    result.narrow(dim_select[0], 2, 1).narrow(dim_select[1], 3, 1).zero_()
    result.narrow(dim_select[0], 4, 1).narrow(dim_select[1], 3, 1).zero_()
    return result


class non_differentiable(object):
    def __init__(self, tensor):
        self.tensor = tensor


class dont_convert(tuple):
    pass


class NoArgsClass(object):
    def __iter__(self):
        return self

    def __next__(self):
        raise StopIteration()
    next = __next__  # Python 2 compatibility

    def __len__(self):
        return 0

NO_ARGS = NoArgsClass()
L = 20
M = 10
S = 5

# (
#   method name,
#   input size/constructing fn,
#   args (tuple represents shape of a tensor arg),
#   test variant name (will be used at test name suffix),    // optional
#   indices for possible dim arg,                            // optional
#   fn mapping output to part that should be gradcheck'ed,   // optional
# )
method_tests = [
    ('add', (S, S, S), ((S, S, S),)),
    ('add', (S, S, S), ((S, S),), 'broadcast_rhs'),
    ('add', (S, S), ((S, S, S),), 'broadcast_lhs'),
    ('add', (S, 1, S), ((M, S),), 'broadcast_all'),
    ('add', (), ((),), 'scalar'),
    ('add', (S, S, S), ((),), 'scalar_broadcast_rhs'),
    ('add', (), ((S, S, S),), 'scalar_broadcast_lhs'),
    ('add', (S, S, S), (3.14,), 'constant'),
    ('add', (), (3.14,), 'scalar_constant'),
    ('__radd__', (S, S, S), (3.14,), 'constant'),
    ('__radd__', (), (3.14,), 'scalar_constant'),
    ('sub', (S, S, S), ((S, S, S),)),
    ('sub', (S, S, S), ((S, S),), 'broadcast_rhs'),
    ('sub', (S, S), ((S, S, S),), 'broadcast_lhs'),
    ('sub', (S, 1, S), ((M, S),), 'broadcast_all'),
    ('sub', (S, S, S), ((),), 'scalar_broadcast_rhs'),
    ('sub', (), ((S, S, S),), 'scalar_broadcast_lhs'),
    ('sub', (S, S, S), (3.14,), 'constant'),
    ('sub', (), (3.14,), 'scalar_constant'),
    ('__rsub__', (S, S, S), (3.14,), 'constant'),
    ('__rsub__', (), (3.14,), 'scalar_constant'),
    ('mul', (S, S, S), ((S, S, S),)),
    ('mul', (), ((),), 'scalar'),
    ('mul', (S, S, S), ((S, S),), 'broadcast_rhs'),
    ('mul', (S, S), ((S, S, S),), 'broadcast_lhs'),
    ('mul', (S, 1, S), ((M, S),), 'broadcast_all'),
    ('mul', (S, S, S), ((),), 'scalar_broadcast_rhs'),
    ('mul', (), ((S, S, S),), 'scalar_broadcast_lhs'),
    ('mul', (S, S, S), (3.14,), 'constant'),
    ('mul', (), (3.14,), 'scalar_constant'),
    ('__rmul__', (S, S, S), (3.14,), 'constant'),
    ('__rmul__', (), (3.14,), 'scalar_constant'),
    ('div', (S, S, S), (torch.rand(S, S, S) + 0.1,)),
    ('div', (S, S, S), (torch.rand(S, S) + 0.1,), 'broadcast_rhs'),
    ('div', (S, S), (torch.rand(S, S, S) + 0.1,), 'broadcast_lhs'),
    ('div', (S, 1, S), (torch.rand(M, S) + 0.1,), 'broadcast_all'),
    ('div', (), (uniform_scalar(0.1),), 'scalar'),
    ('div', (S, S, S), (uniform_scalar(0.1),), 'scalar_broadcast_rhs'),
    ('div', (), (uniform_scalar(0.1),), 'scalar_broadcast_lhs'),
    ('div', torch.rand(S, S, S) + 1e-1, (3.14,), 'constant'),
    ('__rdiv__', torch.rand(S, S, S) + 1e-1, (3.14,), 'constant'),
    ('div', uniform_scalar(1e-1, requires_grad=True), (3.14,), 'scalar_constant'),
    ('__rdiv__', uniform_scalar(1e-1, requires_grad=True), (3.14,), 'scalar_constant'),
    ('pow', torch.rand(S, S, S) + 1e-3, (torch.rand(S, S, S) + 0.1,)),
    ('pow', torch.rand(S, S, S) + 1e-3, (torch.rand(1,) + 0.1,), 'broadcast_rhs'),
    ('pow', torch.rand(1,) + 1e-3, (torch.rand(S, S, S) + 0.1,), 'broadcast_lhs'),
    ('pow', torch.rand(S, 1, S) + 1e-3, (torch.rand(1, S, 1) + 0.1,), 'broadcast_all'),
    ('pow', uniform_scalar(1e-3, requires_grad=True), (uniform_scalar(0.1),), 'scalar'),
    ('pow', torch.rand(S, S, S) + 1e-3, (uniform_scalar(0.1),), 'scalar_broadcast_rhs'),
    ('pow', uniform_scalar(1e-3, requires_grad=True), (torch.rand(S, S, S) + 0.1,), 'scalar_broadcast_lhs'),
    ('pow', torch.rand(S, S, S) + 1e-3, (3.14,), 'constant'),
    ('__rpow__', torch.rand(S, S, S) + 1e-3, (3.14,), 'constant'),
    ('pow', uniform_scalar(1e-3, requires_grad=True), (3.14,), 'scalar_constant'),
    ('__rpow__', uniform_scalar(1e-3, requires_grad=True), (3.14,), 'scalar_constant'),
    ('transpose', (1, 2, 3), (1, 2), 'dim', [0, 1]),
    ('transpose', (), (0, 0), 'scalar'),
    ('transpose', (1,), (0, 0), '1d'),
    ('transpose', torch.rand(L, L), (0, 1), '2d'),
    ('transpose', torch.rand(S, S, S), (2, 0), '3d'),
    ('t', (1, 2), NO_ARGS),
    ('view', (S, S, S), (S * S, S),),
    ('view', (S, S, S), (torch.Size([S * S, S]),), 'size'),
    ('view', (S,), (S,), '1d'),
    ('view', (), (dont_convert(()),), 'scalar_to_scalar'),
    ('view', (), (1,), 'scalar_to_1d'),
    ('reshape', (S, S, S), (S * S, S),),
    ('reshape', (S, S, S), (torch.Size([S * S, S]),), 'size'),
    ('reshape', (S,), (S,), '1d'),
    ('reshape', (), (dont_convert(()),), 'scalar_to_scalar'),
    ('reshape', (), (1,), 'scalar_to_1d'),
    ('reshape_as', (S, S, S), (non_differentiable(torch.rand(S * S, S)),)),
    ('reshape_as', (), (non_differentiable(torch.tensor(42.)),), 'scalar'),
    ('reshape_as', (), (non_differentiable(torch.rand(1, 1)),), 'scalar_to_dims'),
    ('flip', (S, S, S), ([0],), 'd0'),
    ('flip', (S, S, S), ([0, 1, 2],), 'd012'),
    ('flip', (S, S, S), ([0, 2],), 'd02'),
    ('flip', (S, S, S), ([2, 0],), 'd20'),
    ('flip', (S, S, S), ([-1],), 'neg_d'),
    ('rot90', (S, S, S), (1, [0, 1],), 'k1_d01'),
    ('rot90', (S, S, S), (1, [1, 2],), 'k1_d12'),
    ('rot90', (S, S, S), (1, [1, -1],), 'k1_neg_d'),
    ('rot90', (S, S, S), (), 'default'),
    ('view_as', (S, S, S), (non_differentiable(torch.rand(S * S, S)),)),
    ('view_as', (), (non_differentiable(torch.tensor(5.5)),), 'scalar'),
    ('view_as', (), (non_differentiable(torch.rand(1, 1)),), 'scalar_to_dims'),
    ('expand', (S, 1, 1), (S, S, S)),
    ('expand', (torch.Size([S, 1, S]),), (S, S, S), 'size'),
    ('expand', (S, 1), (S, S, S), 'new_dim'),
    ('expand', (1,), (S, S, S), '1_element'),
    ('expand', (1, S), (1, 1, S), 'new_dim_front_old_front_1'),
    ('expand', (), (dont_convert(()),), 'scalar_to_scalar'),
    ('expand', (), (1, 3, 2), 'scalar_to_dims'),
    ('exp', (S, S, S), NO_ARGS),
    ('exp', (), NO_ARGS, 'scalar'),
    ('expm1', (S, S, S), NO_ARGS),
    ('expm1', (), NO_ARGS, 'scalar'),
    ('erf', torch.rand(S, S, S), NO_ARGS),
    ('erf', uniform_scalar(requires_grad=True), NO_ARGS, 'scalar'),
    ('erfc', torch.rand(S, S, S), NO_ARGS),
    ('erfc', uniform_scalar(requires_grad=True), NO_ARGS, 'scalar'),
    ('erfinv', torch.rand(S, S, S).clamp(-0.9, 0.9), NO_ARGS),
    ('erfinv', normal_scalar_clamp(-0.9, 0.9, requires_grad=True), NO_ARGS, 'scalar'),
    ('log', torch.rand(S, S, S) + 1e-2, NO_ARGS),
    ('log', uniform_scalar(1e-2, requires_grad=True), NO_ARGS, 'scalar'),
    ('log10', torch.rand(S, S, S) + 1e-2, NO_ARGS),
    ('log10', uniform_scalar(1e-2, requires_grad=True), NO_ARGS, 'scalar'),
    ('log1p', torch.rand(S, S, S), NO_ARGS),
    ('log1p', uniform_scalar(requires_grad=True), NO_ARGS, 'scalar'),
    ('log2', torch.rand(S, S, S) + 1e-2, NO_ARGS),
    ('log2', uniform_scalar(1e-2, requires_grad=True), NO_ARGS, 'scalar'),
    ('tanh', (S, S, S), NO_ARGS),
    ('tanh', (), NO_ARGS, 'scalar'),
    ('sigmoid', (S, S, S), NO_ARGS),
    ('sigmoid', (), NO_ARGS, 'scalar'),
    ('sinh', (S, S, S), NO_ARGS),
    ('sinh', (), NO_ARGS, 'scalar'),
    ('cosh', (S, S, S), NO_ARGS),
    ('cosh', (), NO_ARGS, 'scalar'),
    ('abs', (S, S, S), NO_ARGS),
    ('abs', (), NO_ARGS, 'scalar'),
    ('clamp', (S, S, S), (0, 1)),
    ('clamp', (S, S, S), (None, 0.5), 'min'),
    ('clamp', (S, S, S), (0.5, None), 'max'),
    ('clamp', (), (0, 1), 'scalar'),
    ('clamp', (), (None, 0.5), 'min_scalar'),
    ('clamp', (), (0.5, None), 'max_scalar'),
    ('sqrt', torch.rand(S, S, S) + 5e-4, NO_ARGS),
    ('sqrt', uniform_scalar(5e-4, requires_grad=True), NO_ARGS, 'scalar'),
    ('sin', (S, S, S), NO_ARGS),
    ('sin', (), NO_ARGS, 'scalar'),
    ('cos', (S, S, S), NO_ARGS),
    ('cos', (), NO_ARGS, 'scalar'),
    ('tan', torch.randn(S, S, S).clamp(-1, 1), NO_ARGS),
    ('asin', torch.randn(S, S, S).clamp(-0.9, 0.9), NO_ARGS),
    ('acos', torch.randn(S, S, S).clamp(-0.9, 0.9), NO_ARGS),
    ('atan', (S, S, S), NO_ARGS),
    ('atan', (), NO_ARGS, 'scalar'),
    ('atan2', (S, S, S), ((S, S, S),)),
    ('atan2', (), ((),), 'scalar'),
    ('atan2', (S, S, S), ((S,),), 'broadcast_rhs'),
    ('atan2', (S,), ((S, S, S),), 'broadcast_lhs'),
    ('atan2', (S, 1, S), ((S, S),), 'broadcast_all'),
    ('reciprocal', torch.rand(S, S, S) + 0.1, NO_ARGS),
    ('reciprocal', uniform_scalar(0.1, requires_grad=True), NO_ARGS, 'scalar'),
    ('round', (S, S, S), NO_ARGS),
    ('round', (), NO_ARGS, 'scalar'),
    ('sign', (S, S, S), NO_ARGS),
    ('sign', (), NO_ARGS, 'scalar'),
    ('trunc', (S, S, S), NO_ARGS),
    ('trunc', (), NO_ARGS, 'scalar'),
    ('floor', (S, S, S), NO_ARGS),
    ('floor', (), NO_ARGS, 'scalar'),
    ('ceil', (S, S, S), NO_ARGS),
    ('ceil', (), NO_ARGS, 'scalar'),
    ('rsqrt', torch.rand(S, S, S) + 1e-2, NO_ARGS),
    ('rsqrt', uniform_scalar(1e-2, requires_grad=True), NO_ARGS, 'scalar'),
    ('frac', (S, S, S), NO_ARGS),
    ('frac', (), NO_ARGS, 'scalar'),
    ('fmod', (S, S, S), (1.5,)),
    ('fmod', (), (1.5,), 'scalar'),
    ('fmod', (S, S, S), (non_differentiable(torch.rand(S, S, S) + 1.5),), 'tensor'),
    ('fmod', (S,), (non_differentiable(torch.rand(S, S, S) + 1.5),), 'tensor_broadcast_lhs'),
    ('fmod', (S, S, S), (non_differentiable(torch.rand(S) + 1.5),), 'tensor_broadcast_rhs'),
    ('fmod', (S, 1, S), (non_differentiable(torch.rand(S, S) + 1.5),), 'tensor_broadcast_all'),
    ('fmod', (), (non_differentiable(uniform_scalar(1.5)),), 'scalar_tensor'),
    ('fmod', (), (non_differentiable(torch.rand(S, S, S) + 1.5),), 'scalar_tensor_broadcast_lhs'),
    ('fmod', (S, S, S), (non_differentiable(uniform_scalar(1.5)),), 'scalar_tensor_broadcast_rhs'),
    ('remainder', (S, S, S), (1.5,)),
    ('remainder', (), (1.5,), 'scalar'),
    ('remainder', (S, S, S), (non_differentiable(torch.rand(S, S, S) + 1.5),), 'tensor'),
    ('remainder', (S,), (non_differentiable(torch.rand(S, S, S) + 1.5),), 'tensor_broadcast_lhs'),
    ('remainder', (S, 1, S), (non_differentiable(torch.rand(S, S) + 1.5),), 'tensor_broadcast_all'),
    ('remainder', (), (non_differentiable(uniform_scalar(1.5)),), 'scalar_tensor'),
    ('remainder', (), (non_differentiable(torch.rand(S, S, S) + 1.5),), 'scalar_tensor_broadcast_lhs'),
    ('lerp', (S, S, S), ((S, S, S), 0.4)),
    ('lerp', (S, S, S), ((S,), 0.4), 'broadcast_rhs'),
    ('lerp', (S,), ((S, S, S), 0.4), 'broadcast_lhs'),
    ('lerp', (S, 1, S), ((S, S), 0.4), 'broadcast_all'),
    ('lerp', (), ((), 0.4), 'scalar'),
    ('lerp', (S, S, S), ((), 0.4), 'scalar_broadcast_rhs'),
    ('lerp', (), ((S, S, S), 0.4), 'scalar_broadcast_lhs'),
    ('max', (S, S, S), NO_ARGS),
    ('max', (S, S, S), (1,), 'dim', [0]),
    ('max', (S, S, S), (1, True,), 'keepdim_dim', [0]),
    ('max', (), NO_ARGS, 'scalar'),
    ('max', (), (0,), 'scalar_dim', [0]),
    ('max', (), (0, True,), 'scalar_keepdim_dim', [0]),
    ('max', (S, S, S), ((S, S, S),), 'elementwise'),
    ('max', (S, S, S), ((S,),), 'elementwise_broadcast_rhs'),
    ('max', (S,), ((S, S, S),), 'elementwise_broadcast_lhs'),
    ('max', (S, 1, S), ((S, S),), 'elementwise_broadcast_all'),
    ('max', (), ((),), 'scalar_elementwise'),
    ('max', (S, S, S), ((),), 'scalar_elementwise_broadcast_rhs'),
    ('max', (), ((S, S, S),), 'scalar_elementwise_broadcast_lhs'),
    ('min', (S, S, S), NO_ARGS),
    ('min', (S, S, S), (1,), 'dim', [0]),
    ('min', (S, S, S), (1, True,), 'keepdim_dim', [0]),
    ('min', (), NO_ARGS, 'scalar'),
    ('min', (), (0,), 'scalar_dim', [0]),
    ('min', (), (0, True,), 'scalar_keepdim_dim', [0]),
    ('min', (S, S, S), ((S, S, S),), 'elementwise'),
    ('min', (S, S, S), ((S,),), 'elementwise_broadcast_rhs'),
    ('min', (S,), ((S, S, S),), 'elementwise_broadcast_lhs'),
    ('min', (S, 1, S), ((S, S),), 'elementwise_broadcast_all'),
    ('min', (), ((),), 'scalar_elementwise'),
    ('min', (S, S, S), ((),), 'scalar_elementwise_broadcast_rhs'),
    ('min', (), ((S, S, S),), 'scalar_elementwise_broadcast_lhs'),
    ('mean', (S, S, S), NO_ARGS),
    ('mean', (S, S, S), (1,), 'dim', [0]),
    ('mean', (S, S, S), (1, True,), 'keepdim_dim', [0]),
    ('mean', (), NO_ARGS, 'scalar'),
    ('mean', (), (0,), 'scalar_dim', [0]),
    ('mean', (), (0, True,), 'scalar_keepdim_dim', [0]),
    ('kthvalue', (S, S, S), (2,)),
    ('kthvalue', (), (1,), 'scalar'),
    ('kthvalue', (S, S, S), (2, 1,), 'dim', [1]),
    ('kthvalue', (), (1, 0,), 'scalar_dim', [1]),
    ('kthvalue', (S, S, S), (2, 1, True,), 'keepdim_dim', [1]),
    ('kthvalue', (), (1, 0, True), 'scalar_keepdim_dim', [1]),
    ('kthvalue', (S,), (2, 0,), 'dim_1d', [1]),
    ('kthvalue', (S,), (2, 0, True,), 'keepdim_dim_1d', [1]),
    ('median', (S, S, S), NO_ARGS),
    ('median', (S, S, S), (1,), 'dim', [0]),
    ('median', (S, S, S), (1, True,), 'keepdim_dim', [0]),
    ('median', (), NO_ARGS, 'scalar'),
    ('median', (), (0,), 'scalar_dim', [0]),
    ('median', (), (0, True,), 'scalar_keepdim_dim', [0]),
    ('mode', (S, S, S), NO_ARGS),
    ('mode', (S, S, S), (1,), 'dim', [0]),
    ('mode', (S, S, S), (1, True,), 'keepdim_dim', [0]),
    ('mode', (), NO_ARGS, 'scalar'),
    ('mode', (), (0,), 'scalar_dim', [0]),
    ('mode', (), (0, True,), 'scalar_keepdim_dim', [0]),
    ('sum', (S, S, S), NO_ARGS),
    ('sum', (S, S, S), (1,), 'dim', [0]),
    ('sum', (S, S, S), (1, True,), 'keepdim_dim', [0]),
    ('sum', (), NO_ARGS, 'scalar'),
    ('sum', (), (0,), 'scalar_dim', [0]),
    ('sum', (), (0, True,), 'scalar_keepdim_dim', [0]),
    ('sum', (S, S, S), ([1, 2],), 'multi_dim'),
    ('sum', (S, S, S), ([1, 2], True,), 'multi_dim_keepdim'),
    ('prod', (S, S, S), NO_ARGS),
    ('prod', (S, S, S), (1,), 'dim', [0]),
    ('prod', (S, S, S), (1, True,), 'keepdim_dim', [0]),
    ('prod', (), NO_ARGS, 'scalar'),
    ('prod', (), (0,), 'scalar_dim', [0]),
    ('prod', (), (0, True,), 'scalar_keepdim_dim', [0]),
    ('prod', prod_zeros(S, [0, 1]), NO_ARGS, 'zerodims2'),
    ('prod', prod_zeros(S, [0, 2]), NO_ARGS, 'zerodims1'),
    ('prod', prod_zeros(S, [1, 2]), NO_ARGS, 'zerodims0'),
    ('prod', prod_zeros(S, [0, 1]), (1,), 'zeros_dims2', [0]),
    ('prod', prod_zeros(S, [0, 2]), (1,), 'zeros_dims1', [0]),
    ('prod', prod_zeros(S, [1, 2]), (1,), 'zeros_dims0', [0]),
    ('prod', prod_zeros(S, [0, 1]), (1, True), 'keepdim_zeros_dims2', [0]),
    ('prod', prod_zeros(S, [0, 2]), (1, True), 'keepdim_zeros_dims1', [0]),
    ('prod', prod_zeros(S, [1, 2]), (1, True), 'keepdim_zeros_dims0', [0]),
    ('prod', prod_single_zero(S), NO_ARGS, 'single_zero'),
    ('prod', (torch.tensor(0., requires_grad=True)), NO_ARGS, 'scalar_zero'),
    ('prod', (torch.tensor(0., requires_grad=True)), (0,), 'scalar_dim_zero', [0]),
    ('prod', (torch.tensor(0., requires_grad=True)), (0, True,), 'scalar_keepdim_dim_zero', [0]),
    ('var', (S, S, S), NO_ARGS),
    ('var', (S, S, S), (1,), 'dim', [0]),
    ('var', (S, S, S), (1, True, True), 'keepdim_dim', [0]),
    ('var', (S,), (0,), 'dim_1d', [0]),
    ('var', (S,), (0, True, True), 'keepdim_dim_1d', [0]),
    ('std', (S, S, S), NO_ARGS),
    ('std', (S, S, S), (1,), 'dim', [0]),
    ('std', (S, S, S), (1, True, True), 'keepdim_dim', [0]),
    ('std', (S,), (0,), 'dim_1d', [0]),
    ('std', (S,), (0, True, True), 'keepdim_dim_1d', [0]),
    ('renorm', (S, S, S), (2, 1, 0.5), 'dim', [1]),
    ('renorm', (S, S, S), (1, 2, 3), 'norm_1'),
    ('renorm', (S, S, S), (inf, 2, 0.5), 'norm_inf'),
    ('repeat', (S,), (2,), 'single_number'),
    ('repeat', (), (2, 3), 'scalar'),
    ('repeat', (2, 2), (3, 2)),
    ('repeat', (2, 2), (1, 3, 1, 2), 'unsqueeze'),
    ('cumsum', (S, S, S), (0,), 'dim0', [0]),
    ('cumsum', (S, S, S), (1,), 'dim1', [0]),
    ('cumsum', (), (0,), 'dim0_scalar', [0]),
    ('cumprod', (S, S, S), (0,)),
    ('cumprod', (S, S, S), (1,), 'dim1', [0]),
    ('cumprod', (), (0,), 'scalar'),
    ('cumprod', (torch.tensor(0., requires_grad=True)), (0,), 'scalar_zeros'),
    ('cumprod', prod_zeros(S, [0, 1]), (1,), 'zeros_dim2', [0]),
    ('cumprod', prod_zeros(S, [0, 2]), (1,), 'zeros_dim1', [0]),
    ('cumprod', prod_zeros(S, [1, 2]), (1,), 'zeros_dim0', [0]),
    ('unfold', (), (0, 1, 1), 'scalar', [0]),
    ('unfold', (S, S, S, S), (1, 3, 1), '', [0]),
    ('unfold', (S, S, S), (2, 3, 2), 'lastdim', [0]),
    ('addmm', (S, M), ((S, S), (S, M)),),
    ('addmm', (1,), ((S, S), (S, M)), 'broadcast_lhs'),
    ('addmm', (S, M), ((S, S), (S, M)), 'coef', (), (), lambda x: x, {'beta': 0.2, 'alpha': 0.6}),
    ('addmm', (1,), ((S, S), (S, M)), 'broadcast_lhs_coef', (), (), lambda x: x, {'beta': 0.2, 'alpha': 0.6}),
    ('addmm', (), ((S, S), (S, M)), 'scalar_broadcast_lhs'),
    ('addmm', (), ((S, S), (S, M)), 'scalar_broadcast_lhs_coef', (), (), lambda x: x, {'beta': 0.2, 'alpha': 0.6}),
    ('addbmm', (S, M), ((S, S, S), (S, S, M)),),
    ('addbmm', (1,), ((S, S, S), (S, S, M)), 'broadcast_lhs'),
    ('addbmm', (S, M), ((S, S, S), (S, S, M)), 'coef', (), (), lambda x: x, {'beta': 0.2, 'alpha': 0.6}),
    ('addbmm', (1,), ((S, S, S), (S, S, M)), 'broadcast_lhs_coef', (), (), lambda x: x, {'beta': 0.2, 'alpha': 0.6}),
    ('addbmm', (), ((S, S, S), (S, S, M)), 'scalar_broadcast_lhs'),
    ('addbmm', (), ((S, S, S), (S, S, M)), 'scalar_broadcast_lhs_coef', (), (), lambda x: x,
        {'beta': 0.2, 'alpha': 0.6}),
    ('baddbmm', (S, S, M), ((S, S, S), (S, S, M)),),
    ('baddbmm', (1,), ((S, S, S), (S, S, M)), 'broadcast_lhs'),
    ('baddbmm', (S, S, M), ((S, S, S), (S, S, M)), 'coef', (), (), lambda x: x, {'beta': 0.2, 'alpha': 0.6}),
    ('baddbmm', (1,), ((S, S, S), (S, S, M)), 'broadcast_lhs_coef', (), (), lambda x: x, {'beta': 0.2, 'alpha': 0.6}),
    ('baddbmm', (), ((S, S, S), (S, S, M)), 'scalar_broadcast_lhs'),
    ('baddbmm', (), ((S, S, S), (S, S, M)), 'scalar_broadcast_lhs_coef', (), (), lambda x: x,
        {'beta': 0.2, 'alpha': 0.6}),
    ('addmv', (S,), ((S, M), (M,)),),
    ('addmv', (1,), ((S, M), (M,)), 'broadcast_lhs'),
    ('addmv', (S,), ((S, M), (M,)), 'coef', (), (), lambda x: x, {'beta': 0.2, 'alpha': 0.6}),
    ('addmv', (1,), ((S, M), (M,)), 'broadcast_lhs_coef', (), (), lambda x: x, {'beta': 0.2, 'alpha': 0.6}),
    ('addmv', (), ((S, M), (M,)), 'scalar_broadcast_lhs'),
    ('addmv', (), ((S, M), (M,)), 'scalar_broadcast_lhs_coef', (), (), lambda x: x, {'beta': 0.2, 'alpha': 0.6}),
    ('addr', (S, M), ((S,), (M,)),),
    ('addr', (), ((S,), (M,)), 'broadcast_lhs'),
    ('addr', (S, M), ((S,), (M,)), 'coef', (), (), lambda x: x, {'beta': 0.2, 'alpha': 0.6}),
    ('addr', (), ((S,), (M,)), 'broadcast_lhs_coef', (), (), lambda x: x, {'beta': 0.2, 'alpha': 0.6}),
    ('dot', (L,), ((L,),),),
    ('mm', (S, M), ((M, S),)),
    ('bmm', (M, S, M), ((M, M, S),)),
    ('mv', (S, M), ((M,),)),
    ('ger', (S,), ((M,),)),
    ('matmul', (L,), ((L,),),),
    ('matmul', (S, M), ((M,),), "2d_1d"),
    ('matmul', (M, ), ((M, S),), "1d_2d"),
    ('matmul', (S, M), ((M, S),), "2d_2d"),
    ('matmul', (S, S, M, M), ((S, S, M, S),), "4d_4d"),
    ('matmul', (S, S, M, M), ((M,),), "4d_1d"),
    ('matmul', (M,), ((S, S, M, S),), "1d_4d"),
    ('matrix_power', (S, S), [2], "n=2"),
    ('matrix_power', (S, S, S), [3], "n=3"),
    ('matrix_power', (S, S, S), [1], "n=1"),
    ('matrix_power', (S, S, S), [0], "n=0"),
    ('matrix_power', lambda: random_fullrank_matrix_distinct_singular_value(S), [-1], "n=-1",
     NO_ARGS, [skipIfNoLapack]),
    ('matrix_power', lambda: random_fullrank_matrix_distinct_singular_value(S), [-3], "n=-3",
     NO_ARGS, [skipIfNoLapack]),
    ('matrix_power', lambda: random_fullrank_matrix_distinct_singular_value(S, S), [-2], "n=-2",
     NO_ARGS, [skipIfNoLapack]),
    ('addcmul', (S, S), ((S, S), (S, S))),
    ('addcmul', (S, S), ((S, 1), (1, S)), 'broadcast_rhs'),
    ('addcmul', (1,), ((S, S, 1), (1, S)), 'broadcast_all'),
    ('addcmul', (S, S), ((S, S), (S, S)), 'scale', (), (), lambda x: x, {'value': 0.5}),
    ('addcmul', (S, S), ((S, 1), (1, S)), 'scale_broadcast_rhs', (), (), lambda x: x, {'value': 0.5}),
    ('addcmul', (1,), ((S, S, 1), (1, S)), 'scale_broadcast_all', (), (), lambda x: x, {'value': 0.5}),
    ('addcmul', (), ((), ()), 'scalar'),
    ('addcmul', (S, S), ((), ()), 'scalar_broadcast_rhs'),
    ('addcmul', (), ((S, S, 1), (1, S)), 'scalar_broadcast_lhs'),
    ('addcmul', (), ((), ()), 'scalar_scale', (), (), lambda x: x, {'value': 0.5}),
    ('addcmul', (S, S), ((), ()), 'scalar_scale_broadcast_rhs', (), (), lambda x: x, {'value': 0.5}),
    ('addcmul', (), ((S, S, 1), (1, S)), 'scalar_scale_broadcast_lhs', (), (), lambda x: x, {'value': 0.5}),
    ('addcdiv', (S, S), ((S, S), (S, S))),
    ('addcdiv', (S, S), ((S, 1), (1, S)), 'broadcast_rhs'),
    ('addcdiv', (1,), ((S, S, 1), (1, S)), 'broadcast_all'),
    ('addcdiv', (S, S), ((S, S), (S, S)), 'scale', (), (), lambda x: x, {'value': 0.5}),
    ('addcdiv', (S, S), ((S, 1), (1, S)), 'scale_broadcast_rhs', (), (), lambda x: x, {'value': 0.5}),
    ('addcdiv', (1,), ((S, S, 1), (1, S)), 'scale_broadcast_all', (), (), lambda x: x, {'value': 0.5}),
    ('addcdiv', (), ((), ()), 'scalar'),
    ('addcdiv', (S, S), ((), ()), 'scalar_broadcast_rhs'),
    ('addcdiv', (), ((S, S, 1), (1, S)), 'scalar_broadcast_lhs'),
    ('addcdiv', (), ((), ()), 'scalar_scale', (), (), lambda x: x, {'value': 0.5}),
    ('addcdiv', (S, S), ((), ()), 'scalar_scale_broadcast_rhs', (), (), lambda x: x, {'value': 0.5}),
    ('addcdiv', (), ((S, S, 1), (1, S)), 'scalar_scale_broadcast_lhs', (), (), lambda x: x, {'value': 0.5}),
    ('zero_', (S, S, S), NO_ARGS),
    ('zero_', (), NO_ARGS, 'scalar'),
    ('logsumexp', (S, S), (1,)),
    ('logsumexp', (), (0,), 'scalar'),
    ('norm', (S, S), (), 'default'),
    ('norm', (S, S), (2,), '2'),
    ('norm', (S, S), (0,), '0'),
    ('norm', (S, S), (0.5,), '0_5'),
    ('norm', (S, S), (1,), '1'),
    ('norm', (S, S), (3,), '3'),
    ('norm', (S, S), (inf,), 'inf'),
    ('norm', (S, S), (-inf,), '-inf'),
    ('norm', (S, S), ('fro',), 'fro_default'),
    ('norm', (S, S), ('fro', [0, 1],), 'fro'),
    ('norm', (S, S), ('nuc',), 'nuc'),
    ('norm', (S, S), (-1,), 'neg_1'),
    ('norm', (S, S), (-2,), 'neg_2'),
    ('norm', (S, S), (-0.5,), 'neg_0_5'),
    ('norm', (S, S), (-1.5,), 'neg_1_5'),
    ('norm', (S, S), (-2, 1,), 'neg_2_2_dim', [1]),
    ('norm', (S, S), (-1, 1,), 'neg_1_2_dim', [1]),
    ('norm', (S, S), (0, 1,), '0_2_dim', [1]),
    ('norm', (S, S), (1, 1,), '1_2_dim', [1]),
    ('norm', (S, S), (2, 1,), '2_2_dim', [1]),
    ('norm', (S, S), (3, 1,), '3_2_dim', [1]),
    ('norm', (S, S), (inf, 1,), 'inf_2_dim'),
    ('norm', torch.rand(S, S, S) + 5e-2, (1.5,), '1_5_default'),
    ('norm', (S, S, S), (2, 1), '2_dim', [1]),
    ('norm', (S, S, S), (3, 1), '3_dim', [1]),
    ('norm', torch.rand(S, S, S) + 5e-2, (1.5, 1), '1_5_dim', [1]),
    ('norm', (S, S, S), (2, 1, True), 'keepdim_2_dim', [1]),
    ('norm', (S, S, S), (3, 1, True), 'keepdim_3_dim', [1]),
    ('norm', torch.rand(S, S, S) + 5e-2, (1.5, 1, True), 'keepdim_1_5_dim', [1]),
    ('norm', (), (2, 0), '2_dim_scalar', [1]),
    ('norm', (), (3, 0), '3_dim_scalar', [1]),
    ('norm', (), (2, 0, True), 'keepdim_2_dim_scalar', [1]),
    ('norm', (), (3, 0, True), 'keepdim_3_dim_scalar', [1]),
    ('clone', (S, M, S), NO_ARGS),
    ('clone', (), NO_ARGS, 'scalar'),
    ('dist', (S, S, S), ((S, S, S),)),
    ('dist', (S, S, S), ((S,),), 'broadcast_rhs'),
    ('dist', (S,), ((S, S, S),), 'broadcast_lhs'),
    ('dist', (S, 1, S), ((S, S),), 'broadcast_all'),
    ('dist', (), ((),), 'scalar'),
    ('dist', (S, S, S), ((),), 'scalar_broadcast_rhs'),
    ('dist', (), ((S, S, S),), 'scalar_broadcast_lhs'),
    ('dist', (S, S, S), ((S, S, S), 4), '4'),
    ('dist', (S, S, S), ((S,), 4), '4_broadcast_rhs'),
    ('dist', (S,), ((S, S, S), 4), '4_broadcast_lhs'),
    ('dist', (S, 1, S), ((S, S), 4), '4_broadcast_all'),
    ('dist', (), ((), 4), 'scalar_4'),
    ('dist', (S, S, S), ((), 4), 'scalar_4_broadcast_rhs'),
    ('dist', (), ((S, S, S), 4), 'scalar_4_broadcast_lhs'),
    ('diag', (M, M), NO_ARGS, '2d'),
    ('diag', (3, 5), NO_ARGS, '2d_wide'),
    ('diag', (3, 5), (2,), '2d_wide_pos'),
    ('diag', (3, 5), (-2,), '2d_wide_neg'),
    ('diag', (5, 3), NO_ARGS, '2d_tall'),
    ('diag', (5, 3), (2,), '2d_tall_pos'),
    ('diag', (5, 3), (-2,), '2d_tall_neg'),
    ('diag', (M,), NO_ARGS, '1d'),
    ('diag', (M, M), (1,), '2d_1'),
    ('diag', (M, M), (2,), '2d_2'),
    ('diagonal', (M, M), NO_ARGS, '2d'),
    ('diagonal', (3, 5), NO_ARGS, '2d_wide'),
    ('diagonal', (3, 5), (2,), '2d_wide_pos'),
    ('diagonal', (3, 5), (-2,), '2d_wide_neg'),
    ('diagonal', (5, 3), NO_ARGS, '2d_tall'),
    ('diagonal', (5, 3), (2,), '2d_tall_pos'),
    ('diagonal', (5, 3), (-2,), '2d_tall_neg'),
    ('diagonal', (M, M), (1,), '2d_1'),
    ('diagonal', (M, M), (2,), '2d_2'),
    ('diagonal', (M, M, M), (1, 1, 2), '3d_1'),
    ('diagonal', (M, M, M), (2, 0, 1), '3d_2'),
    ('diagonal', (M, M, M), (-2, 0, 1), '3d_3'),
    ('tril', (M, M), NO_ARGS),
    ('tril', (M, M), (2,), 'idx'),
    ('triu', (M, M), NO_ARGS),
    ('triu', (M, M), (2,), 'idx'),
    ('trace', (M, M), NO_ARGS),
    ('cross', (S, 3), ((S, 3),)),
    ('cross', (S, 3, S), ((S, 3, S), 1), 'dim'),
    ('index_select', (S, S, S), (0, index_variable(2, S)), 'dim', [0]),
    ('index_select', (), (0, torch.tensor([0], dtype=torch.int64)), 'scalar_mixed_dim', [0]),
    ('index_select', (), (0, torch.tensor(0, dtype=torch.int64)), 'scalar_dim', [0]),
    ('index_add', (S, S), (0, index_variable(2, S), (2, S)), 'dim', [0]),
    ('index_add', (), (0, torch.tensor([0], dtype=torch.int64), torch.tensor([2.])), 'scalar_input_dim', [0]),
    ('index_add', (), (0, torch.tensor(0, dtype=torch.int64), torch.tensor(2.)), 'scalar_all_dim', [0]),
    ('index_copy', (S, S), (0, index_perm_variable(2, S), (2, S)), 'dim', [0]),
    ('index_copy', (), (0, torch.tensor([0], dtype=torch.int64), torch.tensor([2.])), 'scalar_input_dim', [0]),
    ('index_copy', (), (0, torch.tensor(0, dtype=torch.int64), torch.tensor(2.)), 'scalar_all_dim', [0]),
    ('index_fill', (S, S), (0, index_variable(2, S), 2), 'dim', [0]),
    # FIXME: we should compute the derivative w.r.t torch.tensor(2)
    ('index_fill', (S, S), (0, index_variable(2, S), non_differentiable(torch.tensor(2))),
     'variable_dim', [0]),
    ('index_fill', (S, S), (0, torch.tensor(0, dtype=torch.int64), 2), 'scalar_index_dim', [0]),
    ('index_fill', (), (0, torch.tensor([0], dtype=torch.int64), 2), 'scalar_input_dim', [0]),
    ('index_fill', (), (0, torch.tensor(0, dtype=torch.int64), 2), 'scalar_both_dim', [0]),
    ('inverse', lambda: random_fullrank_matrix_distinct_singular_value(S), NO_ARGS, '', NO_ARGS, [skipIfNoLapack]),
    ('inverse', lambda: random_fullrank_matrix_distinct_singular_value(S, 2, 3),
     NO_ARGS, 'batched', NO_ARGS, [skipIfNoLapack]),
    ('det', (S, S), NO_ARGS, '', NO_ARGS, [skipIfNoLapack]),
    ('det', (1, 1), NO_ARGS, '1x1', NO_ARGS, [skipIfNoLapack]),
    ('det', lambda: random_symmetric_matrix(S), NO_ARGS, 'symmetric', NO_ARGS, [skipIfNoLapack]),
    ('det', lambda: random_symmetric_psd_matrix(S), NO_ARGS, 'symmetric_psd', NO_ARGS, [skipIfNoLapack]),
    ('det', lambda: random_symmetric_pd_matrix(S), NO_ARGS, 'symmetric_pd', NO_ARGS, [skipIfNoLapack]),
    ('det', lambda: random_square_matrix_of_rank(S, S - 2), NO_ARGS, 'dim2_null', NO_ARGS, [skipIfNoLapack]),
    ('det', lambda: random_square_matrix_of_rank(S, 1), NO_ARGS, 'rank1', NO_ARGS, [skipIfNoLapack]),
    ('det', lambda: random_square_matrix_of_rank(S, 2), NO_ARGS, 'rank2', NO_ARGS, [skipIfNoLapack]),
    ('det', lambda: random_fullrank_matrix_distinct_singular_value(S), NO_ARGS,
     'distinct_singular_values', NO_ARGS, [skipIfNoLapack]),
    # For `logdet` and `slogdet`, the function at det=0 is not smooth.
    # We need to exclude tests with det=0 (e.g. dim2_null, rank1, rank2) and use
    # `make_nonzero_det` to make the random matrices have nonzero det. For
    # `logdet`, we also set `make_nonzero_det(matrix, sign=1)` to make the
    # matrix have positive det.
    ('logdet', lambda: make_nonzero_det(torch.randn(S, S), 1), NO_ARGS, '', NO_ARGS, [skipIfNoLapack]),
    ('logdet', lambda: make_nonzero_det(torch.randn(1, 1), 1), NO_ARGS, '1x1', NO_ARGS, [skipIfNoLapack]),
    ('logdet', lambda: make_nonzero_det(random_symmetric_matrix(S), 1), NO_ARGS,
     'symmetric', NO_ARGS, [skipIfNoLapack]),
    ('logdet', lambda: make_nonzero_det(random_symmetric_pd_matrix(S), 1), NO_ARGS,
     'symmetric_pd', NO_ARGS, [skipIfNoLapack]),
    ('logdet', lambda: make_nonzero_det(random_fullrank_matrix_distinct_singular_value(S), 1, 0), NO_ARGS,
     'distinct_singular_values', NO_ARGS, [skipIfNoLapack]),
    ('slogdet', lambda: make_nonzero_det(torch.randn(1, 1), 1), NO_ARGS,
     '1x1_pos_det', NO_ARGS, [skipIfNoLapack], itemgetter(1)),
    ('slogdet', lambda: make_nonzero_det(torch.randn(1, 1), -1), NO_ARGS,
     '1x1_neg_det', NO_ARGS, [skipIfNoLapack], itemgetter(1)),
    ('slogdet', lambda: make_nonzero_det(torch.randn(S, S), 1), NO_ARGS,
     'pos_det', NO_ARGS, [skipIfNoLapack], itemgetter(1)),
    ('slogdet', lambda: make_nonzero_det(torch.randn(S, S), -1), NO_ARGS,
     'neg_det', NO_ARGS, [skipIfNoLapack], itemgetter(1)),
    ('slogdet', lambda: make_nonzero_det(random_symmetric_matrix(S)), NO_ARGS,
     'symmetric', NO_ARGS, [skipIfNoLapack], itemgetter(1)),
    ('slogdet', lambda: random_symmetric_pd_matrix(S), NO_ARGS,
     'symmetric_pd', NO_ARGS, [skipIfNoLapack], itemgetter(1)),
    ('slogdet', lambda: random_fullrank_matrix_distinct_singular_value(S), NO_ARGS,
     'distinct_singular_values', NO_ARGS, [skipIfNoLapack], itemgetter(1)),
    ('symeig', lambda: random_symmetric_matrix(S), (True, False), 'lower', NO_ARGS, [skipIfNoLapack]),
    ('symeig', lambda: random_symmetric_matrix(S), (True, True), 'upper', NO_ARGS, [skipIfNoLapack]),
    ('symeig', lambda: random_symmetric_matrix(M), (True, True), 'large', NO_ARGS, [skipIfNoLapack]),
    ('svd', lambda: random_fullrank_matrix_distinct_singular_value(S), NO_ARGS, '', NO_ARGS, [skipIfNoLapack]),
    ('svd', lambda: random_fullrank_matrix_distinct_singular_value(S)[:(S - 2)], NO_ARGS,
     'wide', NO_ARGS, [skipIfNoLapack]),
    ('svd', lambda: random_fullrank_matrix_distinct_singular_value(S)[:, :(S - 2)], NO_ARGS,
     'tall', NO_ARGS, [skipIfNoLapack]),
    ('svd', lambda: random_fullrank_matrix_distinct_singular_value(S)[:(S - 2)], (False,),
     'wide_all', NO_ARGS, [skipIfNoLapack], lambda usv: (usv[0], usv[1], usv[2][:, :(S - 2)])),
    ('svd', lambda: random_fullrank_matrix_distinct_singular_value(S)[:, :(S - 2)], (False,),
     'tall_all', NO_ARGS, [skipIfNoLapack], lambda usv: (usv[0][:, :(S - 2)], usv[1], usv[2])),
    ('svd', lambda: random_fullrank_matrix_distinct_singular_value(M), NO_ARGS,
     'large', NO_ARGS, [skipIfNoLapack]),
    ('gesv', (S, S), (random_fullrank_matrix_distinct_singular_value(S),), '', NO_ARGS, [skipIfNoLapack]),
    ('gesv', (S, S, S), (random_fullrank_matrix_distinct_singular_value(S, S),),
     'batched', NO_ARGS, [skipIfNoLapack]),
    ('gesv', (2, 3, S, S), (random_fullrank_matrix_distinct_singular_value(S, 2, 3),),
     'batched_dims', NO_ARGS, [skipIfNoLapack]),
    ('gesv', (2, 2, S, S), (random_fullrank_matrix_distinct_singular_value(S, 1),),
     'batched_broadcast_A', NO_ARGS, [skipIfNoLapack]),
    ('gesv', (1, S, S), (random_fullrank_matrix_distinct_singular_value(S, 2, 2),),
     'batched_broadcast_b', NO_ARGS, [skipIfNoLapack]),
    ('fill_', (S, S, S), (1,), 'number'),
    ('fill_', (), (1,), 'number_scalar'),
    # FIXME: we should compute the derivative w.r.t torch.tensor(1)
    ('fill_', (S, S, S), (non_differentiable(torch.tensor(1)),), 'variable'),
    ('eq_', (S, S, S), ((S, S, S),)),
    ('eq_', (S, S, S), ((1,),), 'broadcast_rhs'),
    ('eq_', (), ((),), 'scalar'),
    ('eq_', (S, S, S), ((),), 'scalar_broadcast_rhs'),
    ('ne_', (S, S, S), ((S, S, S),)),
    ('ne_', (S, S, S), ((1,),), 'broadcast_rhs'),
    ('ne_', (), ((),), 'scalar'),
    ('ne_', (S, S, S), ((),), 'scalar_broadcast_rhs'),
    ('gt_', (S, S, S), ((S, S, S),)),
    ('gt_', (S, S, S), ((1,),), 'broadcast_rhs'),
    ('gt_', (), ((),), 'scalar'),
    ('gt_', (S, S, S), ((),), 'scalar_broadcast_rhs'),
    ('ge_', (S, S, S), ((S, S, S),)),
    ('ge_', (S, S, S), ((1,),), 'broadcast_rhs'),
    ('ge_', (), ((),), 'scalar'),
    ('ge_', (S, S, S), ((),), 'scalar_broadcast_rhs'),
    ('lt_', (S, S, S), ((S, S, S),)),
    ('lt_', (S, S, S), ((1,),), 'broadcast_rhs'),
    ('lt_', (), ((),), 'scalar'),
    ('lt_', (S, S, S), ((),), 'scalar_broadcast_rhs'),
    ('le_', (S, S, S), ((S, S, S),)),
    ('le_', (S, S, S), ((1,),), 'broadcast_rhs'),
    ('le_', (), ((),), 'scalar'),
    ('le_', (S, S, S), ((),), 'scalar_broadcast_rhs'),
    ('eq_', (S, S, S), (0,), 'pyscalar'),
    ('ne_', (S, S, S), (0,), 'pyscalar'),
    ('gt_', (S, S, S), (0,), 'pyscalar'),
    ('ge_', (S, S, S), (0,), 'pyscalar'),
    ('le_', (S, S, S), (0,), 'pyscalar'),
    ('lt_', (), (0,), 'pyscalar'),
    ('eq_', (), (0,), 'pyscalar_scalar'),
    ('ne_', (), (0,), 'pyscalar_scalar'),
    ('gt_', (), (0,), 'pyscalar_scalar'),
    ('ge_', (), (0,), 'pyscalar_scalar'),
    ('lt_', (), (0,), 'pyscalar_scalar'),
    ('le_', (), (0,), 'pyscalar_scalar'),
    ('permute', (1, 2, 3, 4), (0, 2, 3, 1)),
    ('permute', (1, 2, 3, 4), (0, -2, -1, 1), 'neg_dim'),
    ('permute', (), (dont_convert(()),), 'scalar'),
    ('select', (S, S, S), (1, 2), 'dim', [0]),
    ('select', (S, S, S), (1, -1), 'wrap_dim', [0]),
    ('select', (S,), (0, 2), '1d'),
    ('narrow', (S, S, S), (1, 2, 2), 'dim', [0]),
    ('narrow', (S, S, S), (1, 0, 0), 'empty_dim', [0]),
    ('squeeze', (S, 1, S, 1), NO_ARGS),
    ('squeeze', (1, 1, 1, 1), NO_ARGS, 'input_sizes_are_ones'),
    ('squeeze', (S, 1, S, 1), (1,), '1_dim', [0]),
    ('squeeze', (S, 1, S, 1), (2,), 'not_1_dim', [0]),
    ('squeeze', (), (0,), 'scalar', [0]),
    ('unsqueeze', (S, S, S), (0,), 'first', [0]),
    ('unsqueeze', (S, S, S), (1,), 'middle', [0]),
    ('unsqueeze', (S, S, S), (3,), 'last', [0]),
    ('unsqueeze', (), (0,), 'scalar', [0]),
    ('chunk', (S, S, S), (2,)),
    ('chunk', (S, S, S), (S, 1), 'dim', [1]),
    ('split', (S, S, S), (2,)),
    ('split', (S, S, S), (S, 1), 'dim', [1]),
    ('split', (S, S, S), ([int(S / 3), S - int(S / 3) * 2, int(S / 3)],), 'size_list'),
    ('split', (S, S, S), ([int(S / 2), S - int(S / 2) * 2, int(S / 2)], 2), 'size_list_dim', [1]),
    ('gather', (M, S), (0, gather_variable((S, S), 1, M, True)), 'dim0', [0]),
    ('gather', (M, S), (1, gather_variable((M, S // 2), 0, S, True)), 'dim1', [0]),
    ('gather', (), (0, torch.tensor([0], dtype=torch.int64)), 'scalar_input', [0]),
    ('gather', (S,), (0, torch.tensor(0, dtype=torch.int64)), 'scalar_index', [0]),
    ('gather', (), (0, torch.tensor(0, dtype=torch.int64)), 'scalar_both', [0]),
    ('scatter', (M, S), (0, gather_variable((S, S), 1, M), (S, S)), 'dim0', [0]),
    ('scatter', (M, S), (1, gather_variable((M, S // 2), 0, S), (M, S // 2)), 'dim1', [0]),
    ('scatter', (), (0, torch.tensor(0, dtype=torch.int64), ()), 'scalar_all_dim0', [0]),
    ('scatter_add', (M, S), (0, gather_variable((S, S), 1, M), (S, S)), 'dim0', [0]),
    ('scatter_add', (M, S), (1, gather_variable((M, S // 2), 0, S), (M, S // 2)), 'dim1', [0]),
    ('scatter_add', (), (0, torch.tensor(0, dtype=torch.int64), ()), 'scalar_all_dim0', [0]),
    ('masked_select', (M, M), (mask_not_all_zeros((M, M)),)),
    ('masked_select', (M, M), (mask_not_all_zeros((M,)),), 'broadcast_rhs'),
    ('masked_select', (M,), (mask_not_all_zeros((M, M)),), 'broadcast_lhs'),
    ('masked_select', (M, 1, M), (mask_not_all_zeros((M, M)),),
     'broadcast_all'),
    ('masked_select', (), (torch.tensor(1, dtype=torch.uint8),), 'scalar'),
    ('masked_select', (M, M), (torch.tensor(1, dtype=torch.uint8),), 'scalar_broadcast_rhs'),
    ('masked_select', (), (mask_not_all_zeros((M, M)),), 'scalar_broadcast_lhs'),
    ('masked_fill', (M, M), (torch.ByteTensor(M, M).bernoulli_(), 10)),
    ('masked_fill', (M, M), (torch.ByteTensor(M, M).bernoulli_(), torch.tensor(10)), 'tensor'),
    # no lhs or all broadcast on masked_fill or masked_scatter because it's always inplace
    ('masked_fill', (M, M), (torch.ByteTensor(M,).bernoulli_(), 10), 'broadcast_rhs'),
    ('masked_fill', (), (torch.tensor(0, dtype=torch.uint8, requires_grad=False).bernoulli_(), 10), 'scalar'),
    ('masked_fill', (), (torch.tensor(0, dtype=torch.uint8, requires_grad=False).bernoulli_(), torch.tensor(10)),
     'scalar_variable'),
    ('masked_fill', (M, M), (torch.tensor(0, dtype=torch.uint8, requires_grad=False).bernoulli_(), 10),
     'scalar_broadcast_rhs'),
    ('masked_scatter', (M, M), (torch.ByteTensor(M, M).bernoulli_(), (M, M))),
    ('masked_scatter', (M, M), (torch.ByteTensor(M,).bernoulli_(), (M, M)),
     'broadcast_rhs'),
    ('masked_scatter', (M, M), (bernoulli_scalar(), (M, M)), 'scalar'),
    ('masked_scatter', (M, M), (bernoulli_scalar(), (M, M)),
     'scalar_broadcast_rhs'),
    ('resize_', (S, S, S), (torch.Size([S * S, S])), 'fewer_dims'),
    ('resize_', (), (dont_convert(()),), 'scalar'),
    ('resize_', (), (torch.Size([1, 1, 1])), 'scalar_to_dims'),
    ('resize_as_', (), (non_differentiable(torch.tensor(5.)),), 'scalar'),
    ('resize_as_', (), (non_differentiable(torch.randn((1, 1, 1))),), 'scalar_to_dims'),
    ('resize_as_', (S, S, S), (non_differentiable(torch.randn(S * S, S)),)),
    ('sort', (S, M, S), NO_ARGS),
    ('sort', (S, M, S), (1,), 'dim'),
    ('sort', (S, M, S), (1, True), 'dim_desc'),
    ('sort', (), NO_ARGS, 'scalar'),
    ('sort', (), (0,), 'dim_scalar'),
    ('sort', (), (0, True), 'dim_desc_scalar'),
    ('topk', (S, M, S), (3,)),
    ('topk', (S, M, S), (3, 1), 'dim', [1]),
    ('topk', (S, M, S), (3, 1, True), 'dim_desc', [1]),
    ('topk', (S, M, S), (3, 1, True, True), 'dim_desc_sort', [1]),
    ('topk', (), (1,), 'scalar'),
    ('topk', (), (1, 0), 'dim_scalar', [1]),
    ('topk', (), (1, 0, True), 'dim_desc_scalar', [1]),
    ('topk', (), (1, 0, True, True), 'dim_desc_sort_scalar', [1]),
    ('take', (S, S, S), (torch.LongTensor([[-3, 2], [20, 2]]),)),
    ('take', (S, S, S), (torch.tensor(0, dtype=torch.int64),), 'scalar_index'),
    ('take', (), (torch.LongTensor([0]),), 'scalar_data'),
    ('take', (), (torch.tensor(0, dtype=torch.int64),), 'scalar_both'),
    ('where', (M, M), (mask_not_all_zeros((M, M)), (M, M))),
    ('where', (M, 1, M), (mask_not_all_zeros((M, M)), (M, M, 1)), 'broadcast_all'),
    ('where', (), (bernoulli_scalar(), ()), 'scalar'),
    ('where', (M, 1, M), (bernoulli_scalar(), (M, M, 1)), 'scalar_broadcast_mask'),
    ('where', (), (mask_not_all_zeros((M, M)), ()), 'scalar_broadcast_non_mask'),
    ('__getitem__', torch.randn(S, S, S), (dont_convert([1, 2]),)),
    ('__getitem__', torch.randn(S, S, S), (slice(0, 3),), 'slice'),
    ('__getitem__', torch.randn(S, S, S), (dont_convert([slice(0, 3), 1]),), 'slice_index'),
    ('__getitem__', torch.randn(S, S, S), (dont_convert([[0, 2, 3], [1, 3, 3], [0, 0, 2]]),), 'adv_index'),
    ('__getitem__', torch.randn(S, S, S), (dont_convert([[0, 0, 3], [1, 1, 3], [0, 0, 2]]),), 'adv_index_dup'),
    ('__getitem__', torch.randn(S, S, S), (dont_convert([slice(None), slice(None), [0, 3]]),), 'adv_index_end'),
    ('__getitem__', torch.randn(S, S, S), (dont_convert([slice(None), [0, 3], slice(None)]),), 'adv_index_mid'),
    ('__getitem__', torch.randn(S, S, S), (dont_convert([[0, 3], slice(None), slice(None)]),), 'adv_index_beg'),
    ('__getitem__', torch.randn(S, S, S), (dont_convert([[0, 3], [1, 2], slice(None)]),), 'adv_index_comb'),
    ('__getitem__', torch.randn(S, S, S), (dont_convert([[0, 3], ]),), 'adv_index_sub'),
    ('__getitem__', torch.randn(S, S, S), (dont_convert([[0, 3], slice(None)]),), 'adv_index_sub_2'),
    ('__getitem__', torch.randn(S, S, S), (dont_convert([[0, 3], Ellipsis]),), 'adv_index_sub_3'),
    ('__getitem__', torch.randn(S, S, S), (dont_convert([[0, 2, 3], [1, 3, 3],
     torch.LongTensor([0, 0, 2])]),), 'adv_index_var'),
]
# TODO: clamp with min/max


def create_input(call_args, requires_grad=True, non_contiguous=False, call_kwargs=None):
    if not isinstance(call_args, tuple):
        call_args = (call_args,)

    def map_arg(arg):
        def maybe_non_contig(tensor):
            return tensor if not non_contiguous else make_non_contiguous(tensor)

        if isinstance(arg, torch.Size) or isinstance(arg, dont_convert):
            return arg
        elif isinstance(arg, tuple) and len(arg) == 0:
            var = torch.randn((), dtype=torch.double)
            var.requires_grad = requires_grad
            return var
        elif isinstance(arg, tuple) and not isinstance(arg[0], torch.Tensor):
            return Variable(maybe_non_contig(torch.randn(*arg, dtype=torch.double)), requires_grad=requires_grad)
        elif isinstance(arg, non_differentiable):
            if isinstance(arg.tensor, torch.Tensor):
                return maybe_non_contig(arg.tensor)
            return maybe_non_contig(arg.tensor)
        elif isinstance(arg, torch.Tensor):
            if arg.dtype == torch.float:
                arg = arg.double()
            v = maybe_non_contig(arg).detach()
            v.requires_grad = requires_grad and v.is_floating_point()
            return v
        elif callable(arg):
            return map_arg(arg())
        else:
            return arg
    args_out = tuple(map_arg(arg) for arg in call_args)
    kwargs_out = {k: map_arg(v) for k, v in call_kwargs.items()} if call_kwargs else {}
    return args_out, kwargs_out


def unpack_variables(args):
    if isinstance(args, tuple):
        return tuple(unpack_variables(elem) for elem in args)
    else:
        return args


EXCLUDE_FUNCTIONAL = {
    'addmm',
    'addmm_',
    'addbmm',
    'baddbmm',
    'addmv',
    'addmv_',
    'addr',
    'addr_',
    'reshape',
    'where'  # argument order
}
EXCLUDE_GRADCHECK = {
}
EXCLUDE_GRADGRADCHECK = {
}
EXCLUDE_GRADGRADCHECK_BY_TEST_NAME = {
    # *det methods uses svd in backward when matrix is not invertible. However,
    # svd backward is unstable unless the matrix has positive distinct singular
    # values. Generated random matrices satisfy this with high probability, but
    # we can't rely on it. So only test gradgrad on invertible test cases and
    # _distinct_singular_values.
    'test_det',
    'test_det_1x1',
    'test_det_symmetric',
    'test_det_symmetric_psd',
    'test_det_dim2_null',
    'test_det_rank1',
    'test_det_rank2',
    'test_logdet',
    'test_logdet_1x1',
    'test_logdet_symmetric',
    'test_slogdet_1x1_neg_det',
    'test_slogdet_neg_det',
    'test_slogdet_symmetric',
}


def exclude_tensor_method(name, test_name):
    # there are no tensor equivalents for these (inplace or out)
    exclude_all_tensor_method_by_test_name = {
        'test_clamp_min',
        'test_clamp_max',
        'test_clamp_min_scalar',
        'test_clamp_max_scalar',
        'test_slice',
        'test_where',
        'test_where_broadcast_all',
        'test_where_scalar',
        'test_where_scalar_broadcast_mask',
        'test_where_scalar_broadcast_non_mask',
    }
    # there are no out-of-place tensor equivalents for these
    exclude_outplace_tensor_method = {
        'index_add',
        'index_copy',
        'index_fill',
        'masked_fill',
        'masked_scatter',
        'scatter',
        'scatter_add',
        'det',
    }
    if test_name in exclude_all_tensor_method_by_test_name:
        return True
    is_magic_method = name[:2] == '__' and name[-2:] == '__'
    is_inplace = name[-1] == "_" and not is_magic_method
    if not is_inplace and name in exclude_outplace_tensor_method:
        return True
    return False
